| Literature DB >> 34720738 |
Laura G Elsler1, Timothy Haight Frawley2, Gregory L Britten3, Larry B Crowder2, Timothy C DuBois4, Sonja Radosavljevic4, William F Gilly2, Anne-Sophie Crépin4,5, Maja Schlüter4.
Abstract
Small-scale fisheries are critically important for livelihoods around the world, particularly in tropical regions. However, climate variability and anthropogenic climate change may seriously impact small-scale fisheries by altering the abundance and distribution of target species. Social relationships between fishery users, such as fish traders, can determine how each individual responds and is affected by changes in fisheries. These informal cooperative and competitive relationships provide access, support, and incentives for fishing and affect the distribution of benefits. Yet, individuals' actions and impacts on individuals are often the primary focus of the economic analyses informing small-scale fisheries' formal management. This focus dismisses relevant social relationships. We argue that this leads to a disconnect between reality and its model representation used in formal management, which may reduce formal fisheries management's efficiency and efficacy and potentially trigger adverse consequences. Here, we examine this argument by comparing the predictions of a simple bioeconomic fishery model with those of a social-ecological model that incorporates the dynamics of cooperative relationships between fish traders. We illustrate model outcomes using an empirical case study in the Mexican Humboldt squid fishery. We find that (1) the social-ecological model with relationship dynamics substantially improves accuracy in predicting observed fishery variables to the simple bioeconomic model. (2) Income inequality outcomes are associated with changes in cooperative trade relationships. When environmental temperature is included in the model as a driver of species production dynamics, we find that climate-driven temperature variability drives a decline in catch that, in turn, reduce fishers' income. We observe an offset of this loss in income by including cooperative relationships between fish traders (oligopoly) in the model. These relationships break down following species distribution changes and result in an increase in prices fishers receive. Finally, (3) our social-ecological model simulations show that the current fishery development program, which seeks to increase fishers' income through an increase in domestic market demand, is supported by predictions from the simple bioeconomic model, may increase income inequality between fishers and traders. Our findings highlight the real and urgent need to re-think fisheries management models in the context of small-scale fisheries and climate change worldwide to encompass social relationship dynamics. SUPPLEMENTARY INFORMATION: The online version contains supplementary material available at (10.1007/s10113-021-01747-5).Entities:
Keywords: Environmental changes; Humboldt squid fishery; Inequality; Social structures; Social-ecological systems modeling
Year: 2021 PMID: 34720738 PMCID: PMC8550063 DOI: 10.1007/s10113-021-01747-5
Source DB: PubMed Journal: Reg Environ Change ISSN: 1436-3798 Impact factor: 3.678
Fig. 1The map illustrates three years with different climatic conditions of Humboldt squid catches and fishers’ prices registered by fishery reporting office. The markers’ size represents catch volumes (tons); colors indicate ranges of fishers’ pricesin Mexican pesos (MXN) per ton. Santa Rosalìa and Guaymas constitute the core fishing centers
Fig. 2The time series of SST anomalies and catch volume. Low levels of SST are associated with La Niña and high levels with El Niño events
Fig. 3Causal loop diagram and conceptual representation of the three models of the Mexican Humboldt squid fishery in this paper. The models build on one another, adding complexity in each step. They represent social, ecological, and market dynamics. The bioeconomic model (BEM) represents species population, catch, effort, price, and their interactions (blue). The environmental driver model (EDM) adds changes in SST anomalies on catches (green). The social-ecological model (SEM) also includes changes in SST anomalies on the proportion of Pacific squid landings, trader cooperation, and differentiates between fishers’ prices and market prices (orange)
Fig. 4Predicted and measured catch volumes a and fishers’ prices b for 2001–2016. Predictions of the SEM (yellow), EDM (green), BEM (blue), and measured observations (red). Parameter values and functions are outlined in SI S1, SI Table S2 and S4. The simulations use time series inputs of mantle length (as a proxy for SST anomalies) and proportion of Pacific squid landings (grey, right hand axis). The data represents observations aggregated per year. The models were calibrated via a Monte Carlo process over the range of possible parameter values (SI Table S2). Thick curves represent the mean, and the shaded bands represent the 95% confidence intervals. c–e The effect of trend and amplitude of SST anomalies on the mean price gap and fishers’ income for SEM simulations. c The mean price gap calculated as the ratio between fishers’ prices and traders’ prices (i.e., market prices). The areas in red represent large price differences. d Mean fishers’ income. Areas in blue denote high fishers’ income. e, f Fishers and traders’ income 1990–2025 in two alternate fishery development programs with investments starting in 2005: demand development (E) and ) cooperation development (E). Simulations (e, f) use the simulated proportion of Pacific squid landings and SST anomalies (grey, right hand axis). e A program to increase domestic demand with the SEM (yellow) and BEM (blue). f A limitation of trader cooperation (SI S1 Eq. 8) using SEM (yellow)